4.7 Article

GDSRec: Graph-Based Decentralized Collaborative Filtering for Social Recommendation

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 35, Issue 5, Pages 4813-4824

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2022.3153284

Keywords

Collaborative filtering; Social networking (online); Recommender systems; Graph neural networks; Fuses; Deep learning; Convolution; Recommendation; graph neural networks; social network; recommender systems

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Generating recommendations based on user-item interactions and user-user social relations is a common use case in web-based systems. Existing graph-based methods fail to consider the bias offsets of users (items). We propose Graph-Based Decentralized Collaborative Filtering for Social Recommendation (GDSRec) which treats biases as vectors and incorporates them into the learning process of user and item representations. Experimental results show that GDSRec achieves superior performance compared with state-of-the-art related baselines.
Generating recommendations based on user-item interactions and user-user social relations is a common use case in web-based systems. These connections can be naturally represented as graph-structured data and thus utilizing graph neural networks (GNNs) for social recommendation has become a promising research direction. However, existing graph-based methods fails to consider the bias offsets of users (items). For example, a low rating from a fastidious user may not imply a negative attitude toward this item because the user tends to assign low ratings in common cases. Such statistics should be considered into the graph modeling procedure. While some past work considers the biases, we argue that these proposed methods only treat them as scalars and can not capture the complete bias information hidden in data. Besides, social connections between users should also be differentiable so that users with similar item preference would have more influence on each other. To this end, we propose Graph-Based Decentralized Collaborative Filtering for Social Recommendation (GDSRec). GDSRec treats the biases as vectors and fuses them into the process of learning user and item representations. The statistical bias offsets are captured by decentralized neighborhood aggregation while the social connection strength is defined according to the preference similarity and then incorporated into the model design. We conduct extensive experiments on two benchmark datasets to verify the effectiveness of the proposed model. Experimental results show that the proposed GDSRec achieves superior performance compared with state-of-the-art related baselines.

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